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Tecton Announces Line-Up for apply(meetup), the Machine Learning Data Engineering Conference, August 11, 2021

July 19, 2021 By admin Leave a Comment

Free Virtual Event Will Feature Speakers From Robinhood, Shopify and Stanford University

SAN FRANCISCO – Tecton, the enterprise feature store company, today announced the line-up for apply(meetup), the first meetup in the apply() series of events that it is hosting on data engineering for applied machine learning (ML), to be held on August 11: https://www.applyconf.com.

apply(meetup) is a practitioner-focused community event for data and ML teams to discuss the practical data engineering challenges faced when building ML for the real world. Participants will share best practice development patterns, tools of choice and emerging architectures they use to successfully build and manage production ML applications. Everything is on the table from managing labeling pipelines to transforming features in real-time to serving at scale.

apply(meetup) will feature speakers from Arize AI, Drizly, Robinhood, Shopify, Stanford University, Superconductive and Tecton. The event will also feature a panel hosted by The New Stack’s Alex Williams on “Building High-Performance ML Teams”.

“We’re excited to be hosting apply(meetup),” said Mike Del Balso, co-founder and CEO of Tecton. “We organized the first apply() event in April of this year, and it was very well received by the community with more than 3,000 attendees. There’s a lot of hunger for knowledge in the emerging world of data engineering for ML. apply(meetup) is a great opportunity for practitioners to learn from experts and collaborate with peers.”

For the full conference schedule or to register, simply visit: https://www.applyconf.com.

About Tecton
Tecton’s mission is to make world-class ML accessible to every company. Tecton enables data scientists to turn raw data into production-ready features, the predictive signals that feed ML models. The founders created the Uber Michelangelo ML platform, and the team has extensive experience building data systems for industry leaders like Google, Facebook, Airbnb and Uber. Tecton is the main contributor and committer of Feast, the leading open source feature store. Tecton is backed by Andreessen Horowitz and Sequoia and is headquartered in San Francisco with an office in New York. For more information, visit https://www.tecton.ai or follow @tectonAI.

Source: Tecton.ai

Filed Under: Event Tagged With: Machine Learning

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